基于三角函数和累积描述符的特征提取程序,以增强预测建模

Kamran Javed, R. Gouriveau, N. Zerhouni, P. Nectoux
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引用次数: 56

摘要

数据驱动方法的性能与提取特征的形式和趋势密切相关(可视为时间序列健康指标)。(1)即使许多数据驱动的方法适合捕捉信号中的非线性,具有单调趋势的特征(并非总是如此!)可能会导致更好的估计。(2)此外,一些经典提取的特征直到故障发生前一段时间才显示出变化,这阻碍了及时执行RUL预测来计划维护任务。本文的目的是提出一种新的特征提取方法来解决这两个问题。考虑了两个方面。首先,本文重点研究了一种新的特征提取方法,即利用三角函数来提取特征(健康指标),而不是像RMS等典型的统计度量。将该方法应用于离散小波变换的时频分析。其次,提出了一种基于累积函数构建新特征的简单方法,将时间序列转化为描述累积磨损的描述符。这种方法可以扩展到其他类型的特性。这两种发展的主要思想都是将具有单调特征的原始数据与早期趋势进行映射,即使用易于预测的描述符。该方法可以增强预测建模和RUL预测。通过对PRONOSTIA(一个加速轴承退化的实验平台)的振动数据集进行测试,对整个命题进行了说明和讨论。
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A feature extraction procedure based on trigonometric functions and cumulative descriptors to enhance prognostics modeling
Performances of data-driven approaches are closely related to the form and trend of extracted features (that can be seen as time series health indicators). (1) Even if much of data-driven approaches are suitable to catch non-linearity in signals, features with monotonic trends (which is not always the case!) are likely to lead to better estimates. (2) Also, some classical extracted features do not show variation until a few time before failure occurs, which prevents performing RUL predictions in a timely manner to plan maintenance task. The aim of this paper is to present a novel feature extraction procedure to face with these two problems. Two aspects are considered. Firstly, the paper focuses on feature extraction in a new manner by utilizing trigonometric functions to extract features (health indicators) rather than typical statistic measures like RMS, etc. The proposed approach is applied on time-frequency analysis with Discrete Wavelet Transform (DWT). Secondly, a simple way of building new features based on cumulative functions is also proposed in order to transform time series into descriptors that depict accumulated wear. This approach can be extended to other types of features. The main idea of both developments is to map raw data with monotonic features with early trends, i.e., with descriptors that can be easily predicted. This methodology can enhance prognostics modeling and RUL prediction. The whole proposition is illustrated and discussed thanks to tests performed on vibration datasets from PRONOSTIA, an experimental platform that enables accelerated degradation of bearings.
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